Demonstrating a smart controller in a hospital integrated energy system

IF 5.4 Q2 ENERGY & FUELS Smart Energy Pub Date : 2023-08-31 DOI:10.1016/j.segy.2023.100120
Agostino Gambarotta , Riccardo Malabarba , Mirko Morini , Giuliano Randazzo , Michele Rossi , Costanza Saletti , Andrea Vieri
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Abstract

Integrated energy systems have recently gained primary importance in clean energy transition. The combination of the electricity, heating and gas sectors can improve the overall system efficiency and integration of renewables by exploiting the synergies among the energy vectors. In particular, real-time optimization tools based on Model Predictive Control (MPC) can considerably improve the performance of systems with several conversion units and distribution networks by automatically coordinating all interacting technologies. Despite the relevance of several simulation studies on the topic, however, it is significantly harder to have an experimental demonstration of this improvement. This work presents a methodology for the real-world implementation of a novel smart control strategy for integrated energy systems, based on two coordinated MPC levels, which optimize the operation of all conversion units and all energy vectors in the short- and long-term, respectively, to account also for economic incentives on critical units. The strategy that was previously developed and evaluated in a simulation environment has now been implemented, as a supervisory controller, in the integrated energy system of a hospital in Italy. The optimal control logic is easily actuated by dynamically communicating the optimal set-points to the existing Building Management System, without having to alter the system configuration. Field data collected over a two-year period, firstly when it was business as usual and when the new operation was introduced, show that the MPC increased the economic margin and revenues from yearly incentives and lowered the amount of electricity purchased, reducing dependency on the power grid.

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演示医院综合能源系统中的智能控制器
综合能源系统最近在清洁能源转型中获得了首要的重要性。电力、供暖和天然气部门的结合可以通过利用能源载体之间的协同作用,提高整个系统的效率和可再生能源的整合。特别是,基于模型预测控制(MPC)的实时优化工具可以通过自动协调所有交互技术,显著提高具有多个转换单元和配电网的系统的性能。然而,尽管对该主题进行了几项模拟研究,但要对这种改进进行实验演示要困难得多。这项工作提出了一种基于两个协调MPC级别的集成能源系统新型智能控制策略的现实世界实施方法,该策略分别在短期和长期内优化所有转换单元和所有能量矢量的运行,以考虑关键单元的经济激励。以前在模拟环境中开发和评估的策略现在已经作为监督控制器在意大利一家医院的综合能源系统中实施。通过将最优设置点动态地传送到现有的建筑物管理系统,可以容易地启动最优控制逻辑,而不必改变系统配置。两年期间收集的现场数据显示,货币政策委员会提高了经济利润率和年度激励收入,降低了购电量,减少了对电网的依赖。
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来源期刊
Smart Energy
Smart Energy Engineering-Mechanical Engineering
CiteScore
9.20
自引率
0.00%
发文量
29
审稿时长
73 days
期刊最新文献
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